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Monocular depth ordering with occlusion edges extraction and local depth inference

机译:具有遮挡边缘提取和局部深度推断的单眼深度排序

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摘要

In this paper, a method to infer global depth ordering for monocular images is presented. Firstly a distance metric is defined with color, compactness, entropy and edge features to estimate the difference between pixels and seeds, which can ensure the superpixels to obtain more accurate object contours. To correctly infer local depth relationship, a weighting descriptor is designed that combines edge, T-junction and saliency features to avoid wrong local inference caused by a single feature. Based on the weighting descriptor, a global inference strategy is presented, which not only can promote the performance of global depth ordering, but also can infer the depth relationships correctly between two non-adjacent regions. The simulation results on the BSDS500 dataset, Cornell dataset and NYU 2 dataset demonstrate the effectiveness of the approach.
机译:本文提出了一种推断单眼图像全局深度排序的方法。首先,用颜色,紧密度,熵和边缘特征定义距离度量,以估计像素和种子之间的差异,这可以确保超像素获得更准确的对象轮廓。为了正确地推断局部深度关系,设计了一个加权描述符,该描述符结合了边缘,T型结和显着性特征,以避免由单个特征引起的错误局部推断。基于加权描述符,提出了一种全局推理策略,该策略不仅可以促进全局深度排序的性能,而且可以正确地推断两个非相邻区域之间的深度关系。在BSDS500数据集,康奈尔数据集和NYU 2数据集上的仿真结果证明了该方法的有效性。

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